Function Space Bayesian Pseudocoreset for Bayesian Neural Networks

被引:0
|
作者
Kim, Balhae [1 ]
Lee, Hyungi [1 ]
Lee, Juho [1 ,2 ]
机构
[1] KAIST AI, Daejeon, South Korea
[2] AITRICS, Seoul, South Korea
基金
新加坡国家研究基金会;
关键词
D O I
暂无
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
A Bayesian pseudocoreset is a compact synthetic dataset summarizing essential information of a large-scale dataset and thus can be used as a proxy dataset for scalable Bayesian inference. Typically, a Bayesian pseudocoreset is constructed by minimizing a divergence measure between the posterior conditioning on the pseudocoreset and the posterior conditioning on the full dataset. However, evaluating the divergence can be challenging, particularly for the models like deep neural networks having high-dimensional parameters. In this paper, we propose a novel Bayesian pseudocoreset construction method that operates on a function space. Unlike previous methods, which construct and match the coreset and full data posteriors in the space of model parameters (weights), our method constructs variational approximations to the coreset posterior on a function space and matches it to the full data posterior in the function space. By working directly on the function space, our method could bypass several challenges that may arise when working on a weight space, including limited scalability and multi-modality issue. Through various experiments, we demonstrate that the Bayesian pseudocoresets constructed from our method enjoys enhanced uncertainty quantification and better robustness across various model architectures.
引用
收藏
页数:18
相关论文
共 50 条
  • [1] Tractable Function-Space Variational Inference in Bayesian Neural Networks
    Rudner, Tim G. J.
    Chen, Zonghao
    Teh, Yee Whye
    Gal, Yarin
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 35 (NEURIPS 2022), 2022,
  • [2] Bayesian Optimization with Robust Bayesian Neural Networks
    Springenberg, Jost Tobias
    Klein, Aaron
    Falkner, Stefan
    Hutter, Frank
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 29 (NIPS 2016), 2016, 29
  • [3] BAYESIAN NEURAL NETWORKS
    KONONENKO, I
    BIOLOGICAL CYBERNETICS, 1989, 61 (05) : 361 - 370
  • [4] Bayesian Perceptron: Towards fully Bayesian Neural Networks
    Huber, Marco F.
    2020 59TH IEEE CONFERENCE ON DECISION AND CONTROL (CDC), 2020, : 3179 - 3186
  • [5] BAYESIAN NEURAL NETWORKS AND DENSITY NETWORKS
    MACKAY, DJC
    NUCLEAR INSTRUMENTS & METHODS IN PHYSICS RESEARCH SECTION A-ACCELERATORS SPECTROMETERS DETECTORS AND ASSOCIATED EQUIPMENT, 1995, 354 (01): : 73 - 80
  • [6] Bayesian inference in neural networks
    Paige, RL
    Butler, RW
    BIOMETRIKA, 2001, 88 (03) : 623 - 641
  • [7] Bayesian inference in neural networks
    Marzban, C
    FIRST CONFERENCE ON ARTIFICIAL INTELLIGENCE, 1998, : J25 - J30
  • [8] Bayesian inference in neural networks
    Marzban, C
    14TH CONFERENCE ON PROBABILITY AND STATISTICS IN THE ATMOSPHERIC SCIENCES, 1998, : J97 - J102
  • [9] Bayesian modelling of neural networks
    Mutihac, R
    Cicuttin, A
    Estrada, AC
    Colavita, AA
    FOUNDATIONS AND TOOLS FOR NEURAL MODELING, PROCEEDINGS, VOL I, 1999, 1606 : 277 - 286
  • [10] Classification with Bayesian neural networks
    Neal, Radford M.
    MACHINE LEARNING CHALLENGES: EVALUATING PREDICTIVE UNCERTAINTY VISUAL OBJECT CLASSIFICATION AND RECOGNIZING TEXTUAL ENTAILMENT, 2006, 3944 : 28 - 32